International audienceThe problem of band selection (BS) is of great importance to handle the curse of dimensionality for hyperspectral image (HSI) applications (e.g., classification). This letter proposes an unsupervised BS approach based on a split-and-merge concept. This new approach provides relevant spectral sub-bands by splitting the adjacent bands without violating the physical meaning of the spectral data. Next, it merges highly correlated bands and sub-bands to reduce the dimensionality of the HSI. Experiments on three public data sets and comparison with state-of-the-art approaches show the efficiency of the proposed approach
A hyperspectral image (HSI) is a collection of several narrow-band images that span a wide spectral ...
International audienceThe most challenges problems in hyperspectral images processing are the huge a...
International audienceThe most challenges problems in hyperspectral images processing are the huge a...
The problem of band selection (BS) is of great importance to handle the curse of dimensionality for ...
International audienceIn order to alleviate the negative effect of curse of dimensionality, band sel...
The high dimensionality of hyperspectral images (HSIs) brings great difficulty for their later data ...
The high dimensionality of hyperspectral images (HSIs) brings great difficulty for their later data ...
International audienceSpectral optimization consists in identifying the most relevant band subset fo...
International audienceSpectral optimization consists in identifying the most relevant band subset fo...
International audienceSpectral optimization consists in identifying the most relevant band subset fo...
International audienceSpectral optimization consists in identifying the most relevant band subset fo...
This paper develops a new approach to band subset selection (BSS) for hyperspectral image classifica...
Hyperspectral images provide rich spectral details of the observed scene by exploiting contiguous b...
Selecting the decisive spectral bands is a key issue in unsupervised hyperspectral band selection te...
A hyperspectral image (HSI) is a collection of several narrow-band images that span a wide spectral ...
A hyperspectral image (HSI) is a collection of several narrow-band images that span a wide spectral ...
International audienceThe most challenges problems in hyperspectral images processing are the huge a...
International audienceThe most challenges problems in hyperspectral images processing are the huge a...
The problem of band selection (BS) is of great importance to handle the curse of dimensionality for ...
International audienceIn order to alleviate the negative effect of curse of dimensionality, band sel...
The high dimensionality of hyperspectral images (HSIs) brings great difficulty for their later data ...
The high dimensionality of hyperspectral images (HSIs) brings great difficulty for their later data ...
International audienceSpectral optimization consists in identifying the most relevant band subset fo...
International audienceSpectral optimization consists in identifying the most relevant band subset fo...
International audienceSpectral optimization consists in identifying the most relevant band subset fo...
International audienceSpectral optimization consists in identifying the most relevant band subset fo...
This paper develops a new approach to band subset selection (BSS) for hyperspectral image classifica...
Hyperspectral images provide rich spectral details of the observed scene by exploiting contiguous b...
Selecting the decisive spectral bands is a key issue in unsupervised hyperspectral band selection te...
A hyperspectral image (HSI) is a collection of several narrow-band images that span a wide spectral ...
A hyperspectral image (HSI) is a collection of several narrow-band images that span a wide spectral ...
International audienceThe most challenges problems in hyperspectral images processing are the huge a...
International audienceThe most challenges problems in hyperspectral images processing are the huge a...